2006
DOI: 10.1016/j.anihpb.2005.04.004
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Model selection via testing: an alternative to (penalized) maximum likelihood estimators

Abstract: This paper is devoted to the description and study of a family of estimators, that we shall call T -estimators (T for tests), for minimax estimation and model selection. Their construction is based on former ideas about deriving estimators from some families of tests due to Le Cam (1973 and1975) and Birgé (1983, 1984a and and about complexity based model selection from Barron and Cover (1991).It is well-known that maximum likelihood estimators or, more generally, minimum contrast estimators do suffer from var… Show more

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Cited by 94 publications
(197 citation statements)
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References 65 publications
(60 reference statements)
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“…A ßow of publications on aggregation can be seen in mathematical statistics (e.g., Birge [8], Bunea et al [14], Goldenshluger [42]). The problems studied in these works are mainly concentrated on comparison and selection of the best estimator from a given set of estimators.…”
Section: Aggregationmentioning
confidence: 99%
“…A ßow of publications on aggregation can be seen in mathematical statistics (e.g., Birge [8], Bunea et al [14], Goldenshluger [42]). The problems studied in these works are mainly concentrated on comparison and selection of the best estimator from a given set of estimators.…”
Section: Aggregationmentioning
confidence: 99%
“…In order to explain our method of estimation and model selection, we need to recall some general results from Birgé [9] about T-estimators that we shall specialize to the specific framework of this paper. Let (M, d) be some metric space and B(t, r) denote the open ball of center t and radius r in M .…”
Section: Definition and Properties Of T-estimatorsmentioning
confidence: 99%
“…We shall also show that recent results by Rigollet and Tsybakov [32] on aggregation of estimators for density estimation extend straightforwardly to the Poisson case. In Section 3, we briefly recall the general construction of T-estimators introduced in Birgé [9] and apply it to the specific case of Poisson processes. We also provide an illustration based on nonlinear approximating models.…”
Section: An Overview Of the Papermentioning
confidence: 99%
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“…Moreover, the d-estimator can be implemented with only O(n) computations. Notice that a similar collection of linear spaces has lately been used by Birgé [5,6] and Baraud and Birgé [2] for estimation by model selection in various statistical frameworks.…”
mentioning
confidence: 99%